Title of article :
Electricity Supply Model of Conventional Residential Buildings in Tehran with Priority on Renewable Energy Using Adaptive Fuzzy-neural Inference System
Author/Authors :
Khaligh Fard ، S. Department of Civil Engineering - Islamic Azad University, Roudehen branch , Ahmadi ، H. Department of Civil Engineering - Islamic Azad University, Roudehen branch , Alizadeh Elizei ، M. H. Department of Civil Engineering - Islamic Azad University, Roudehen branch
Abstract :
Energy consumption in the building sector, especially in residential buildings, due to the development of urbanization, has taken the largest share among all consumption sectors. Therefore, it is very necessary to predict the energy consumption of buildings, which has been presented as a challenge in recent decades. In this research, adaptive fuzzy-neural inference system (ANFIS) and MATLAB software have been used for forecasting to supply electrical energy to residential buildings whit random data that collected based on the hourly electricity consumption of conventional residential buildings in Tehran. According to the applied settings for the solar and wind energy production has been done by solar panels and wind turbines. The use of renewable energy is one of the ways that can reduce the consumption of fossil fuels and also reduce environmental pollution. Statistical indicators such az MSE, RMSE, µ, σ, and R were used to evaluate the model performance . The obtained values well show the ability of this model to foresee the generation and utilization of energy in privat reresidential buildings with tall exactness of about 96% and 90%, respectively. Therefore, this model well show the ability of to the needed estimates in the mentioned buildings with high accuracy.
Keywords :
Adaptive Fuzzy , neural Inference System , energy management system , Renewable Energy , Residential Buildings , Solar energy , Wind Energy
Journal title :
International Journal of Engineering
Journal title :
International Journal of Engineering